FAO AGRIS - International System for Agricultural Science and Technology

Prediction of the karstic spring flow rates under climate change by climatic variables based on the artificial neural network: a case study of Iran

2020

Zeydalinejad, Nejat | Nassery, Hamid Reza | Shakiba, Alireza | Alijani, Farshad


Bibliographic information
Environmental monitoring and assessment
Volume 192 Issue 6 Pagination 375 - 375 ISSN 0167-6369
Publisher
The Royal Society of Chemistry
Other Subjects
Springs (water)
Language
English
Note
Nal-ap-2-clean
Type
Journal Article; Text

2024-02-28
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